Cadabra ======= .. image:: https://joss.theoj.org/papers/10.21105/joss.01118/status.svg :target: https://doi.org/10.21105/joss.01118 .. image:: https://zenodo.org/badge/DOI/10.5281/zenodo.2500762.svg :target: https://doi.org/10.5281/zenodo.2500762 .. image:: https://github.com/kpeeters/cadabra2/workflows/Linux/badge.svg :target: https://github.com/kpeeters/cadabra2/actions?query=workflow%3ALinux .. image:: https://github.com/kpeeters/cadabra2/workflows/macOS/badge.svg :target: https://github.com/kpeeters/cadabra2/actions?query=workflow%3AmacOS .. image:: https://anaconda.org/conda-forge/cadabra2-jupyter-kernel/badges/version.svg :target: https://anaconda.org/conda-forge/cadabra2-jupyter-kernel *A field-theory motivated approach to computer algebra.* Kasper Peeters - End-user documentation at https://cadabra.science/ - Source code documentation at https://cadabra.science/doxygen/html This repository holds the 2.x series of the Cadabra computer algebra system. It supersedes the 1.x series, which can still be found at https://github.com/kpeeters/cadabra. Cadabra is a symbolic computer algebra system, designed specifically for the solution of problems encountered in quantum and classical field theory. It has extensive functionality for tensor computer algebra, tensor polynomial simplification including multi-term symmetries, fermions and anti-commuting variables, Clifford algebras and Fierz transformations, implicit coordinate dependence, multiple index types and many more. The input format is a subset of TeX. Both a command-line and a graphical interface are available, and there is a kernel for Jupyter. Installation ------------- Cadabra builds on Linux, macOS, OpenBSD, FreeBSD and Windows. Select your system from the list below for detailed instructions. - `Linux (Debian/Ubuntu/Mint)`_ - `Linux (Fedora 24 and later)`_ - `Linux (CentOS/Scientific Linux)`_ - `Linux (openSUSE)`_ - `Linux (Arch/Manjaro)`_ - `Linux (Solus)`_ - `OpenBSD`_ - `FreeBSD`_ - `macOS`_ - `Windows`_ Binaries for these platforms may (or may not) be provided from the download page at https://cadabra.science/download.html, but they are not always very up-to-date. See `Building Cadabra as C++ library`_ for instructions on how to build the entire Cadabra functionality as a library which you can use in a C++ program. See `Building a Jupyter kernel`_ for information on the Jupyter kernel for Cadabra sessions. Linux (Debian/Ubuntu/Mint) ~~~~~~~~~~~~~~~~~~~~~~~~~~ On Debian/Ubuntu you can install all that is needed with:: sudo apt install git cmake libpython3-dev python3-dev g++ libgmp3-dev \ libgtkmm-3.0-dev libboost-all-dev libgmp-dev libsqlite3-dev uuid-dev \ texlive texlive-latex-extra texlive-science dvipng \ python3-matplotlib python3-mpmath python3-sympy python3-gmpy2 (on Ubuntu 14.04 you need to replace `cmake` with `cmake3` and also install g++-4.9; get in touch if you don't know how to do this). On older systems you may want to install `sympy` using `sudo pip3 install sympy`, but that is discouraged in general. This is the development platform and issues are typically first fixed here. You can use either g++ or the clang++ compiler to build. You need to clone the cadabra2 git repository (if you download the .zip file you will not have all data necessary to build). So first do:: git clone https://github.com/kpeeters/cadabra2 Building is then done with the standard:: cd cadabra2 mkdir build cd build cmake .. make sudo make install This will produce the command line app ``cadabra2`` and the Gtk notebook interface ``cadabra2-gtk``. You can also find the latter in the 'Education' menu. Linux (Fedora 24 and later) ~~~~~~~~~~~~~~~~~~~~~~~~~~~ Fedora 24 is the first Fedora to have Python 3; you can build Cadabra using Python 2 but you are strongly encouraged to upgrade. The Fedora platform receives less testing so please get in touch if you run into any issues. You can use either g++ or the clang++ compiler. Install the dependencies with:: sudo dnf install git python3-devel make cmake gcc-c++ \ gmp-devel libuuid-devel sqlite-devel \ gtkmm30-devel boost-devel \ texlive python3-matplotlib \ python3-pip sudo pip3 install sympy You need to clone the cadabra2 git repository (if you download the .zip file you will not have all data necessary to build). So first do:: git clone https://github.com/kpeeters/cadabra2 Building is then done with the standard:: cd cadabra2 mkdir build cd build cmake .. make sudo make install This will produce the command line app ``cadabra2`` and the Gtk notebook interface ``cadabra2-gtk``. You can also find the latter when searching for the 'Cadabra' app from the 'Activities' menu. Linux (CentOS/Scientific Linux) ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ On CentOS/Scientific Linux you need to activate The Software Collections (SCL) and Extra Packages for Enterprise Linux (EPEL) to get access to a modern C++ compiler, Python3 and all required build tools. On *CentOS* first do:: sudo yum install centos-release-scl epel-release On *Scientific Linux* the equivalent is:: sudo yum install yum-conf-softwarecollections epel-release Now install all build dependencies with:: sudo yum install devtoolset-7 rh-python36 cmake3 \ gmp-devel libuuid-devel sqlite-devel \ gtkmm30-devel boost-devel git \ texlive python-matplotlib You need to enable the Python3 and C++ compiler which you just installed with:: scl enable rh-python36 bash scl enable devtoolset-7 bash (note: do *not* use sudo here!). You also need to install sympy by hand:: sudo pip3 install sympy Now need to clone the cadabra2 git repository (if you download the .zip file you will not have all data necessary to build):: git clone https://github.com/kpeeters/cadabra2 Building is then done with the standard:: cd cadabra2 mkdir build cd build cmake3 .. make sudo make install This will produce the command line app ``cadabra2`` and the Gtk notebook interface ``cadabra2-gtk``. You can also find the latter in the 'Education' menu. Linux (openSUSE) ~~~~~~~~~~~~~~~~ For openSUSE (tested on 'Leap 15.2', probably also fine with minor changes for 'Tumbleweed') you first need to install the dependencies with:: sudo zypper install --no-recommends git cmake python3-devel gcc-c++ \ gmp-devel libuuid-devel sqlite-devel \ gtkmm3-devel \ texlive python3-matplotlib \ python3-sympy \ libboost_system1_71_0-devel libboost_filesystem1_71_0-devel \ libboost_date_time1_71_0-devel libboost_program_options1_71_0-devel You can get away with less than the full texlive. This platform receives less testing so please get in touch if you run into any issues. You need to clone the cadabra2 git repository (if you download the .zip file you will not have all data necessary to build). So first do:: git clone https://github.com/kpeeters/cadabra2 Building is then done with the standard:: cd cadabra2 mkdir build cd build cmake .. make sudo make install This will produce the command line app ``cadabra2`` and the Gtk notebook interface ``cadabra2-gtk``. Linux (Arch/Manjaro) ~~~~~~~~~~~~~~~~~~~~ The package for Arch Linux is cadabra2 https://aur.archlinux.org/packages/cadabra2/ Building and installing (including dependencies) can be accomplished with:: yay -S cadabra2 Alternatively use ``makepkg``:: git clone https://aur.archlinux.org/cadabra2.git cd cadabra2 makepkg -si Please consult the Arch Wiki https://wiki.archlinux.org/index.php/Arch_User_Repository#Installing_packages for more information regarding installing packages from the AUR. Linux (Solus) ~~~~~~~~~~~~~ Support for Solux Linux is experimental. To build from source on Solus Linux, first install the dependencies by doing:: sudo eopkg install -c system.devel sudo eopkg install libboost-devel gmp-devel libgtkmm-3-devel sudo eopkg install sqlite3-devel texlive python3-devel sudo eopkg install git cmake make g++ Then configure and build with:: cd cadabra2 mkdir build cd build cmake .. -DCMAKE_INSTALL_PREFIX=/usr make sudo make install This installs below ``/usr`` (instead of ``/usr/local`` on other platforms) because I could not figure out how to make it pick up libraries there. Any feedback on these instructions is welcome. OpenBSD ~~~~~~~ Install the dependencies with:: pkg_add git cmake boost python-3.6.2 gtk3mm gmp gmpxx texlive_texmf-full py3-sympy We will build using the default clang-4.0.0 compiler; building with the alternative g++-4.9.4 leads to trouble when linking against the libraries added with pkg_add. Configure and build with:: cd cadabra2 mkdir build cd build cmake -DENABLE_MATHEMATICA=OFF .. make su make install The command-line version is now available as ``cadabra2`` and the notebook interface as ``cadabra2-gtk``. Any feedback on this platform is welcome as this is not our development platform and testing is done only occasionally. FreeBSD ~~~~~~~ The recommended way to install Cadabra is through:: pkg install cadabra2 It is also possible to build and install Cadabra from the port:: cd /usr/ports/math/cadabra2 && make install clean The command-line version is now available as ``cadabra2`` and the notebook interface as ``cadabra2-gtk``. Any feedback on this platform is welcome as this is not our development platform. macOS ~~~~~ Cadabra builds with the standard Apple compiler, on both Intel and Apple silicon, but you do need a number of packages from Homebrew (see https://brew.sh). Install the required dependencies with:: brew install cmake boost gmp python3 brew install pkgconfig brew install gtkmm3 adwaita-icon-theme pip3 install sympy gmpy2 If the lines above prompt you to install XCode, go ahead and let it do that. You also need a TeX installation such as MacTeX, https://tug.org/mactex/ . *Any* TeX will do, as long as 'latex' and 'dvipng' are available, so you simply do:: brew install mactex Make sure to *install TeX* before attempting to build Cadabra, otherwise the Cadabra style files will not be installed in the appropriate place. Make sure 'latex' works from the terminal in which you will build Cadabra. You can build against an Anaconda Python installation (in case you prefer Anaconda over the Homebrew Python); cmake will automatically pick this up if available. You need to clone the cadabra2 git repository (if you download the .zip file you will not have all data necessary to build). So do:: git clone https://github.com/kpeeters/cadabra2 After that you can build with the standard:: cd cadabra2 mkdir build cd build cmake -DENABLE_MATHEMATICA=OFF .. make sudo make install (*note* the `-DENABLE_MATHEMATICA=OFF` in the `cmake` line above; the Mathematica scalar backend does not yet work on macOS). This will produce the command line app ``cadabra2`` and the Gtk notebook interface ``cadabra2-gtk``. Feedback from macOS users is *very* welcome because this is not the main development platform. Windows ~~~~~~~ On Windows the main constraint on the build process is that we want to link to Anaconda's Python, which has been built with Visual Studio. The recommended way to build Cadabra is thus to build against libraries which are all built using Visual Studio as well (if you are happy to not use Anaconda, you can also build with the excellent MSYS2 system from https://www.msys2.org/). It is practically impossible to build all dependencies yourself without going crazy, but fortunately that is not necessary because of the VCPKG library at https://github.com/Microsoft/vcpkg. This contains all dependencies (boost, gtkmm, sqlite and various others) in ready-to-use form. If you do not already have it, first install Visual Studio Community Edition from https://www.visualstudio.com/downloads/ and install Anaconda (a 64 bit version!) from https://www.anaconda.com/download/. You also need a TeX distribution, for instance MiKTeX from https://miktex.org and of course git from e.g. https://gitforwindows.org/. You need all four before you can start building Cadabra. The instructions below are for building using the Visual Studio 'x64 Native Tools Command Prompt' (not the GUI). First, clone the vcpkg repository:: git clone https://github.com/Microsoft/vcpkg Run the bootstrap script to set things up:: cd vcpkg bootstrap-vcpkg.bat Install all the dependencies with (this is a *very* slow process, be warned, it can easily take several hours, but at least it's automatic):: vcpkg install mpir:x64-windows glibmm:x64-windows sqlite3:x64-windows vcpkg install boost-system:x64-windows boost-asio:x64-windows boost-uuid:x64-windows boost-program-options:x64-windows boost-signals2:x64-windows boost-property-tree:x64-windows boost-date-time:x64-windows boost-filesystem:x64-windows boost-ublas:x64-windows vcpkg install gtkmm:x64-windows vcpkg integrate install The last line will spit out a CMAKE toolchain path; write it down, you need that shortly. Now clone the cadabra repository and configure as:: cd .. git clone https://github.com/kpeeters/cadabra2 cd cadabra2 mkdir build cd build cmake -DCMAKE_TOOLCHAIN_FILE=[the path obtained in the last step] -DCMAKE_BUILD_TYPE=RelWithDebInfo -DVCPKG_TARGET_TRIPLET=x64-windows -DCMAKE_INSTALL_PREFIX=C:\Cadabra -G "Visual Studio 16 2019" -A x64 .. the latter all on one line, in which you replace the ``CMAKE_TOOLCHAIN_PATH`` with the path produced by the ``vcpkg integrate install`` step. Do _not_ forget the ``..`` at the very end! The last line can be adjusted to `-G "Visual Studio 15 2017 Win64"` if you are on the previous version of Visual Studio. You can ignore warnings (but not errors) about Boost. You may have to add:: -DCMAKE_INCLUDE_PATH="C:\Program Files (x86)\Microsoft Visual Studio\2019\Community\VC\Redist\MSVC\14.22.27821" or a similar path to make cmake pick up `msvc140.dll` and related; see [https://developercommunity.visualstudio.com/content/problem/618084/cmake-installrequiredsystemlibraries-broken-in-lat.html] Now build Cadabra with:: cmake --build . --config RelWithDebInfo --target install This will build and then install in ``C:\Cadabra``. The self-tests can be run by doing:: ctest (still fails tensor_monomials, bianchi_identities, paper and young when in Release build). Finally, the command-line version of Cadabra can now be started with:: python C:\Cadabra\bin\cadabra2 and you can start the notebook interface with:: C:\Cadabra\bin\cadabra2-gtk It should be possible to simply copy the C:\Cadabra folder to a different machine and run it there (that is essentially what the binary installer does). To create an installer, make sure you have Inno installer available. Then run, from the `cadabra2/config` directory:: "C:\Program Files (x86)\Inno Setup 6\ISCC" install_script.iss Building a Jupyter kernel ------------------------- As of version 2.3.4 the standard build process (as described above) also creates a Jupyter kernel, which is written in Python on top of `ipykernel` (thanks to Fergus Baker). This should work on most platforms out-of-the-box; you do not need to do anything else. The Jupyter kernel allows you to use Cadabra notation inside a Jupyter notebook session. The distribution also still contains code for the 'old' Jupyter kernel, which is written in C++ on top of `xeus`. Building this kernel is more complicated mainly because of this dependency, and there is not much of an advantage over the Python kernel; it's mainly left in the tree for future reference, For full instructions on how to build the old `xeus`-based kernel, see https://github.com/kpeeters/cadabra2/blob/master/JUPYTER.rst. Tutorials and other help ------------------------ Please consult https://cadabra.science/ for tutorial-style notebooks and all other documentation, and https://cadabra.science/doxygen/html/ for doxygen documentation of the current master branch. The latter can also be generated locally; you will need (on Debian and derivatives):: sudo apt-get install doxygen libjs-mathjax For any questions, please contact info@cadabra.science . Building Cadabra as C++ library ------------------------------- If you want to use the functionality of Cadabra inside your own C++ programs, you can build Cadabra as a shared library. To do this:: mkdir build cmake -DBUILD_AS_CPP_LIBRARY=ON .. make sudo make install There is a sample program `simple.cc `_ in the `c++lib` directory which shows how to use the Cadabra library. Special thanks -------------- Special thanks to José M. Martín-García (for the xPerm canonicalisation code), James Allen (for writing much of the factoring code), Dominic Price (for the meld algorithm implementation, many additions to the notebook interface, the conversion to pybind and the Windows port), Fergus Baker (for the new Jupyter kernel), Isuru Fernando (for the Conda packaging), the Software Sustainability Institute and the Institute of Advanced Study. Thanks to the many people who have sent me bug reports (keep 'm coming), and thanks to all of you who use Cadabra, sent feedback or cited the Cadabra papers.